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Adaptive total variation image deblurring: A majorization-minimization approach

机译:自适应总变化图像去模糊:一种最大化-最小化方法

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This paper presents a new approach to image deconvolution (deblurring), under total variation (TV) regularization, which is adaptive in the sense that it does not require the user to specify the value of the regularization parameter. We follow the Bayesian approach of integrating out this parameter, which is achieved by using an approximation of the partition function of the Bayesian prior interpretation of the TV regularizer. The resulting optimization problem is then attacked using a majorization-minimization algorithm. Although the resulting algorithm is of the iteratively reweighted least squares (IRLS) type, thus suffering of the infamous "singularity issue", we show that this issue is in fact not problematic, as long as adequate initialization is used. Finally, we report experimental results showing that the proposed methodology achieves state-of-the-art performance, on par with TV-based methods with hand tuned regularization parameters, as well as with the best wavelet-based methods.
机译:本文提出了一种在总变化(TV)正则化条件下进行图像去卷积(去模糊)的新方法,该方法具有自适应性,因为它不需要用户指定正则化参数的值。我们遵循贝叶斯方法对这个参数进行积分,这是通过使用电视正则化器的贝叶斯先验解释的分区函数的近似值来实现的。然后使用主化-最小化算法来攻击最终的优化问题。尽管生成的算法是迭代加权最小二乘(IRLS)类型的,因此遭受了臭名昭著的“奇异性问题”的困扰,但我们证明,只要使用足够的初始化,此问题实际上就没有问题。最后,我们报告的实验结果表明,与基于TV的方法(具有手动调整的正则化参数)以及基于最佳小波的方法相比,所提出的方法可实现最先进的性能。

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